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Human-Centered Approaches to Designing Intelligent Agents' Manner for Supporting High-Level Thinking
The Hong Kong University of Science and Technology Department of Computer Science and Engineering PhD Thesis Defence Title: "Human-Centered Approaches to Designing Intelligent Agents' Manner for Supporting High-Level Thinking" By Mr. Zhenhui PENG Abstract High-level thinking, such as decision-making, problem solving, and critical thinking, is an essential skill that people need to learn and apply in their daily lives. Such thinking is often complex, and people can traditionally get help from others for task completion. For example, students can get guidance from instructors on how to read papers critically. However, such human experts are not always available. Intelligent agents in a robot or bot form can mitigate this issue by socially offering real-time assistance to users. Yet, it is challenging to design the agents that can appropriately support users in high-level thinking tasks, because interacting with the agents may distract users from the main tasks which could require a lot of mental effort. Researchers of these intelligent agents need to answer: where can the agents offer help; how to design their behaviors; how to develop the agents for design validation; and how to evaluate the proposed design. My thesis research investigates the design and user experience of intelligent agents and their manner (i.e., way of behaving) for supporting users’ high-level thinking tasks. To address the design questions mentioned above, I adopt a set of human-centered approaches that first discover the usage scenarios of the agents by emphasizing with targeted users. Then I design the agents and their manners by summarizing human assistants’ behavioral patterns and existing technological practices. Next, I develop the agent prototypes and evaluate our design via user studies with targeted users. I adopt this approach to design and evaluate intelligent agents in three high-level thinking support contexts separately, i.e., decision-making, problem solving, and critical thinking. In the first study, we learn from human workers’ behaviors and robot’s autonomy to model the service robot’s proactivity (low, medium, high) in decision-making support tasks. Our experiment in a simulated shopping scenario shows that a highly proactive robot is deemed inappropriate, the one with medium proactivity helps reduce the decision space, and the least proactive robot grants users more control but may not realize its full capability. The second study explores a problem-solving scenario where we propose a writing assistant MepsBot for peers to compose solutions to help seekers’ problems in online mental health communities. Inspired by design practices of existing writing support tools, we develop MepsBot with two assistant mechanisms, i.e., AS mode that assesses writing performance and RE mode that recommends similar high-quality examples. Our lab experiment found that AS-mode MepsBot encourages users to refine expressions and is deemed easier to use, while the RE-mode one stimulates more support-related content re-editions. In the third study, we target students’ needs of critical thinking during their academic paper reading process. Learned from the paper reading experience of senior researchers and the design practice of chatbots, we propose a CReBot that asks questions to encourage critical thinking when users read each paper section. In comparison to the guidelines that list all questions, our experiment indicates that CReBot encourages more critical reading behaviors and significantly improves users’ perceived performance in paper reinterpretation. In all, my three works demonstrate the feasibility of the proposed human-centered approaches to designing appropriate and useful intelligent agents for supporting high-level thinking. We conclude the thesis proposal with future work for generalizing our methods and proposed intelligent agents. Date: Friday, 12 March 2021 Time: 3:00pm - 5:00pm Zoom Meeting: https://hkust.zoom.us/j/95053480747?pwd=SWtXMUx5QUJ2UTRzbU1taC8xUlhQdz09 Chairperson: Prof. Jianfeng CAI (MATH) Committee Members: Prof. Xiaojuan MA (Supervisor) Prof. Qiong LUO Prof. Chiew Lan TAI Prof. Dongwon LEE (ISOM) Prof. Juho KIM (KAIST) **** ALL are Welcome ****